This paper describes the participation of the U.S. National Library of Medicine (NLM) in the ImageCLEF 2017 caption task. We proposed different machine learning methods using training subsets that we selected from the provided data as well as retrieval methods using external data. For the concept detection subtask, we used Convolutional Neural Networks (CNNs) and Binary Relevance using decision trees for multi-label classification. We also proposed a retrieval-based approach using Open-i image search engine and MetaMapLite to recognize relevant terms and associated Concept Unique Identifiers (CUIs). For the caption prediction subtask, we used the recognized CUIs and the UMLS to generate the captions. We also applied Open-i to retrieve simil...
The caption prediction task is in 2018 in its second edition after the task was first run in the sam...
ImageCLEF is the image retrieval task of the Conference and Labs of the Evaluation Forum (CL...
Abstract The action of understanding and interpretation of medical images is a very important task ...
This work presents the proposed solutions of our team for the ImageCLEFmedical Caption 2022 task [1...
This paper presents an overview of the ImageCLEF 2017 caption tasks on the analysis of images from t...
The 2022 ImageCLEFmedical caption prediction and concept detection tasks follow similar challenges t...
The caption prediction task is in 2018 in its second edition after the task was first run in the sam...
The 2022 ImageCLEFmedical caption prediction and concept detection tasks follow similar challenges t...
The 2021 ImageCLEF concept detection and caption prediction task follows similar challenges that wer...
The University of Essex participated in the fourth edition of the ImageCLEFcaption task which aims t...
This paper describes the ImageCLEF 2019 Concept Detection Task. This is the 3rd edition of the medic...
This work presents the NLIP-Essex-ITESM team's participation in the concept detection sub-task of th...
This paper presents an overview of the ImageCLEF 2017 caption tasks on the analysis of images from t...
In this paper, we describe the participation of the Mami team at ImageCLEF 2017 for the Image Captio...
This paper describes the ImageCLEFmed 2020 Concept Detection Task. After first being proposed at Ima...
The caption prediction task is in 2018 in its second edition after the task was first run in the sam...
ImageCLEF is the image retrieval task of the Conference and Labs of the Evaluation Forum (CL...
Abstract The action of understanding and interpretation of medical images is a very important task ...
This work presents the proposed solutions of our team for the ImageCLEFmedical Caption 2022 task [1...
This paper presents an overview of the ImageCLEF 2017 caption tasks on the analysis of images from t...
The 2022 ImageCLEFmedical caption prediction and concept detection tasks follow similar challenges t...
The caption prediction task is in 2018 in its second edition after the task was first run in the sam...
The 2022 ImageCLEFmedical caption prediction and concept detection tasks follow similar challenges t...
The 2021 ImageCLEF concept detection and caption prediction task follows similar challenges that wer...
The University of Essex participated in the fourth edition of the ImageCLEFcaption task which aims t...
This paper describes the ImageCLEF 2019 Concept Detection Task. This is the 3rd edition of the medic...
This work presents the NLIP-Essex-ITESM team's participation in the concept detection sub-task of th...
This paper presents an overview of the ImageCLEF 2017 caption tasks on the analysis of images from t...
In this paper, we describe the participation of the Mami team at ImageCLEF 2017 for the Image Captio...
This paper describes the ImageCLEFmed 2020 Concept Detection Task. After first being proposed at Ima...
The caption prediction task is in 2018 in its second edition after the task was first run in the sam...
ImageCLEF is the image retrieval task of the Conference and Labs of the Evaluation Forum (CL...
Abstract The action of understanding and interpretation of medical images is a very important task ...